Technical Field
[0001] The present invention is a method for providing a genetic test service using one
or more genetic markers of representative model organisms, a set of genetic markers,
and distribution pattern information of the markers as genetic marker information
of a target organism, in which the genetic markers are those of well-known genes and
representative model organisms that have already been studied in depth scientifically
and well annotated in the literature, and a method for finding out or predicting genetic
variation information and related functional information using a genetic marker of
a pre-analyzed model organism as genetic marker information of a target organism to
be tested.
Background Art
[0002] A genetic marker refers to a genetic type or characteristic that indicates the phenotype
of living organisms, including humans. So far, many studies have been conducted comparing
normal and disease samples in humans. Many studies have compared samples with and
without having excellent economic and symbolic traits in the population of livestock
and pets. Genetic markers representing these phenotypes exist on the genome of living
things or in the exogenous genome (epigenome). However, the full-length genome is
vast, so the study mainly focused on important genes known to be fundamentally related
to traits. Currently, due to the rise of the next-generation sequencing (NGS) technique,
decoding (sequence) information and genetic traits are being excavated as a large
amount of data. As many of these NGS data are increasing, research in functional genomics
is accelerating. Many NGS data are being generated to elucidate the functions of the
genome and exogenous genome for not only humans but also economic animals such as
pets and livestock, and plants, and functions for many genomic regions, including
quantitative trait locus (QTL), have been revealed.
[0003] Currently, a method for performing a genetic test using a genetic marker has been
researched and developed. In this regard, prior art
Korean Patent Publication No. 2019-0019395 (published on February 27, 2019) and
Korean Patent No. 10-1325736 (published on November 08, 2013), respectively, disclose a configuration of obtaining information about at least
one single nucleotide polymorphism marker associated with at least one trait among
the genetic information of the subject, determining the score of at least one single
nucleotide polymorphic marker according to the effect of at least one single nucleotide
polymorphic marker on at least one trait in reference to the expression type of the
at least one single nucleotide polymorphism marker, determining the score of at least
one single nucleotide polymorphic marker according to the effect of at least one single
nucleotide polymorphic marker on at least one trait, and estimating the aptitude of
the subject based on the determined score of at least one single nucleotide polymorphic
marker and a configuration for extracting mutation data mapped to a gene by sequencing
a gene sample, calculating a hazard score that quantifies disorders that occur in
gene function due to mutation data, and searching a gene network for submodules in
which genes having a hazard score equal to or greater than a predetermined threshold
are aggregated.
[0004] However, numerous genetic markers associated with various diseases and phenotypes
have been identified for genetic testing, mainly in humans. In other non-human animals
with high homology, only genetic markers associated with some phenotypes have been
identified. In addition, since the revealed genetic marker is also a genetic marker
corresponding to a specific disease or phenotype, genetic testing using a genetic
marker other than a specific disease or phenotype is impossible. Accordingly, there
is a need to develop a method for matching or transcribing to target organisms of
different species in consideration of the genetic markers, genetic marker sets, or
distribution pattern information of the markers of the model organism for which the
genetic markers have been identified, such as humans. The function change is derived
from the matched genetic markers and predicting the change in the trait function derived
from a matched genetic marker and using it as a genetic marker of a target organism.
Disclosure
Technical Problem
[0005] One embodiment of the present invention matches or transcribes information such as
genes, exogenous genes, or combinations and distribution patterns of these types of
markers of a model organism in which genetic markers are identified, such as humans,
to a target organism, and changes in trait function derived from matched genetic markers
are predicted bioinformatically. Thus, it is immediately used as a genetic marker
of a target heterogeneous organism. Therefore, it is possible to easily translate
and match genetic markers that have not been revealed through experimental research
or verification in the target organism. Accordingly, the pre-established information
of the model organism theoretically or inferentially is used to bioinformatically
find or predict and use the genetic marker of the target organism, which is the species
to be tested without additional expensive new research and development. Thus, it has
the advantage of being able to generate and provide a gene test report for the predicted
function of the target organism quickly and easily. However, since it is based on
theoretical reasoning, some unintentional sacrifices in accuracy may occur.
[0006] In conclusion, the method, according to an embodiment of the present invention, is
a method of providing a genetic test service for a different species based on the
use of a genetic marker of a model organism as a genetic marker of a target organism
using genetic marker matching information of a heterogeneous organism. However, the
technical task to be achieved by the present embodiment is not limited to the technical
task described above, and other technical tasks may exist. Not only genes but also
exogenous information can be matched and utilized in other organisms using the same
principle. Even though it is referred to only as a gene in the present specification,
the contents may be equally or similarly applied to the case of an exogenous gene.
Technical Solution
[0007] As a technical means for achieving the above-described technical problem, an embodiment
of the present invention comprises steps of selecting at least one gene or exogenous
marker from a pre-stored model organism, comparing when the selected at least one
genetic marker is a pre-disclosed genetic marker based on pre-analyzed information,
the genomic information of the model organism and the genome information of the target
organism to be used for the genetic testing service, and providing a gene mutation-based
gene report for the target organism based on the comparison result of the genome information
of the target organism and the model organism. In selecting a marker to be used for
the target organism, the genetic marker selected may be a 1:1 relationship resulting
from comparison through the above-described matching process, etc., and maybe a relationship
of a set of such markers. If there is a pattern such as distribution in the genetic
markers, additional information such as distribution pattern within the genetic region
may be used together.
Advantageous Effects
[0008] According to any one of the above-mentioned means for solving the problems of the
present invention, gene markers of a set of markers of a model organism in which genetic
markers are identified, such as humans, are matched or transcribed to a target organism,
and changes in trait function derived from matched genetic markers are predicted to
use as a genetic marker of a target organism. Therefore, it is possible to easily
translate and match genetic markers that have not been revealed in the target organism.
Accordingly, the pre-established information of the model organism is used to find
or predict and use the genetic marker of the target organism, which is the species
to be tested without additional new research and development. As a final result, it
is possible to quickly and easily generate and provide a genetic test report for a
target organism.
Description of Drawings
[0009]
Fig. 1 is a view for explaining a system for providing a genetic test service using
a genetic marker of a model organism based on a genetic marker matching of a heterogeneous
organism as a genetic marker of a target organism, according to an embodiment of the
present invention.
Fig. 2 is a block diagram illustrating a genetic test service providing server included
in the system of FIG. 1.
Fig. 3 is a flowchart illustrating an example in which a genetic testing service using
a genetic marker of a model organism based on genetic marker matching of a heterogeneous
organism as a genetic marker of a target organism is performed, according to an embodiment
of the present invention.
Fig. 4 is an operation flowchart for explaining the process of comparing genome information
between heterogeneous organisms of Fig. 3.
Fig. 5 is a flowchart illustrating a method of providing a genetic test service using
a genetic marker of a model organism based on a genetic marker matching of a heterogeneous
organism as a genetic marker of a target organism, according to an embodiment of the
present invention.
Mode for Invention
[0010] Hereinafter, embodiments of the present invention are described in detail with reference
to the accompanying drawings so that those of ordinary skill in the art can easily
implement them. However, the present invention may be embodied in various forms and
is not limited to the embodiments described herein. In order to clearly explain the
present invention in the drawings, parts irrelevant to the description are excluded,
and like reference numerals are assigned to like parts throughout the specification.
[0011] Throughout the specification, when a part is "connected" with another part, this
includes not only the case of being "directly connected" but also the case of being
"electrically connected" with another element interposed therebetween. Also, when
a part "includes" a certain component, it means that other components may be further
included, rather than excluding other components, unless otherwise stated. It is to
be understood that it does not preclude the possibility of the presence or addition
of one or more other features, numbers, steps, operations, components, parts, or combinations
thereof. For example, in the case of matching genetic markers between heterogeneous
organisms, in addition to simple 1:1 matching, additional information such as a set
of markers, a distribution pattern of markers, and an occurrence frequency pattern
in each organism may be utilized in the final matching process.
[0012] The terms related to a degree "about," "substantially," and the like used throughout
the specification is used in a sense at or close to the numerical value when manufacturing
and material tolerances inherent in the stated meaning are presented and used to prevent,
by unconscionable infringers, unreasonable exploitation of the disclosure in which
exact or absolute figures are described to help the understanding of the present invention.
As used throughout the specification of the present invention, the term "step for"
or "step for" related to a degree does not mean "step for."
[0013] In this specification, a "part" includes a unit realized by hardware, a unit realized
by software, and a unit realized using both. In addition, one unit may be implemented
using two or more hardware, and two or more units may be implemented with one hardware.
[0014] In this specification, some of the operations or functions described as being performed
by the terminal, apparatus, or device may be performed instead of by a server connected
to the terminal, apparatus, or device. Similarly, some of the operations or functions
described as being performed by the server may also be performed in a terminal, apparatus,
or device connected to the server.
[0015] In this specification, some of the operations or functions described as mapping or
matching with the terminal may be interpreted as mapping or matching the terminal's
unique number or personal identification information, which is the identification
data of the terminal.
[0016] Further, it should be understood that the term "gene" used in this specification
always refers to including an epigenetic.
[0017] Hereinafter, the present invention is described in detail with reference to the accompanying
drawings.
[0018] Fig. 1 is a view for explaining a system for providing a genetic test service using
a genetic marker of a model organism based on a genetic marker matching of a heterogeneous
organism as a genetic marker of a target organism, according to an embodiment of the
present invention. Referring to Fig. 1, a system for providing genetic test service
1 using a genetic marker of a model organism based on genetic marker matching of a
heterogeneous organism as a genetic marker of a target organism comprises at least
one user terminal 100, a genetic test service providing server 300, at least one database
server 400. However, the system for providing genetic test service 1 that uses the
genetic marker of a model organism based on genetic marker matching of a heterogeneous
organism of FIG. 1 as a genetic marker of a target organism is only an embodiment
of the present invention. Accordingly, the present invention is not limitedly interpreted
through Fig. 1.
[0019] In this case, each component of Fig. 1 is generally connected through a network 200.
For example, as shown in Fig. 1, the at least one user terminal 100 may be connected
to the genetic test service providing server 300 through the network 200. Further,
the genetic test service providing server 300 may be connected to the at least one
user terminal 100 and the at least one database server 400 through the network 200.
Further, the at least one database server 400 may be connected to the genetic test
service providing server 300 through the network 200.
[0020] In this case, the network refers to a connection structure in which information exchange
is possible between each node, such as a plurality of terminals and servers. Such
networks include RF, 3rd generation partnership project (3GPP) network, and Long Term
(LTE). Evolution) network, 5th generation partnership project (5GPP) network, world
interoperability for microwave access (WiMAX) network, Internet, local area network
(LAN), wireless local area network (Wireless LAN), wide area network (WAN), personal
area network (PAN), Bluetooth network, NFC network, satellite broadcasting network,
an analog broadcasting network, digital multimedia broadcasting (DMB) network, and
the like are included but are not limited thereto.
[0021] In the following, it is apparent that the term at least one is defined as a term
including the singular and the plural, and although the term at least one does not
exist, each element may exist in the singular or plural and may mean the singular
or plural. Further, each component is provided in a singular or a plurality, which
may be changed, according to an embodiment.
[0022] The at least one user terminal 100 may be a terminal of a user who requests a genetic
test for themselves, others, or other biological species using a genetic test service-related
web page, app page, program, or application that uses the genetic marker of a model
organism based on genetic marker matching of a heterogeneous organism as a genetic
marker of a target organism.
[0023] In this case, the at least one user terminal 100 may be a terminal that requests
a genetic test result for a genetic sample of a subject or a test species to the genetic
test service providing server 300. Further, the at least one user terminal 100 may
be a terminal that receives a genetic test result for a subject or a test species
from the genetic test service providing server 300 as a genetic test report.
[0024] Here, the at least one user terminal 100 may be implemented as a computer capable
of accessing a remote server or terminal through a network. Here, the computer may
include, for example, navigation, a laptop equipped with a web browser, a desktop,
and a laptop. In this case, the at least one user terminal 100 may be implemented
as a terminal capable of accessing a remote server or terminal through a network.
The at least one user terminal 100 is, for example, a wireless communication device
with guaranteed portability and mobility and may include all kinds of handheld-based
wireless communication devices such as navigation, personal communication system (PCS),
global system for mobile communications (GSM), personal digital cellular (PDC), personal
handy-phone system (PHS), personal digital assistant (PDA), international mobile telecommunication
(IMT)-2000, code division multiple access (CDMA)-2000, W-code division multiple access
(W-CDMA), Wireless broadband internet (Wibro) terminal, a smartphone, a smart pad,
a tablet PC, etc.
[0025] The genetic test service providing server 300 may be a server providing a genetic
test service's web page, app page, program, or application using a genetic marker
of a model organism based on genetic marker matching of a heterogeneous organism as
a genetic marker of a target organism. Further, the genetic test service providing
server 300 may be a server as follows: when the genetic test service providing server
300 receives a genetic test request for a subject or a test species from the user
terminal 100, the genetic test service providing server 300 selects at least one genetic
marker from the model organism. Further, when the selected genetic marker is a genetic
marker that has already been identified and well known through research, etc., and
is of high importance, the model organism's genome information and the target organism's
genome information are compared. Further, when there is a genetic marker with a high
matching rate or similarity, a functional change of the genetic marker of the target
organism corresponding to a subject or species to be tested is predicted to generate
a genetic test report on the genetic mutation of the target organism. At this time,
the degree of publicity may be determined depending on whether the search is performed
in the at least one database server 400 or whether the importance has been studied
and revealed, or what the level of importance is even if it is discovered but various
variables other than the listed parameters and conditions may exist.
[0026] Here, the genetic test service providing server 300 may be implemented as a computer
capable of accessing a remote server or terminal through a network. Here, the computer
may include, for example, navigation, a laptop equipped with a web browser, a desktop,
and a laptop.
[0027] The at least one database server 400 may be a server as follows: the server 400 may
use or not use the genetic test service-related web page, app page, program, or application
that uses the genetic marker of the model organism based on genetic marker matching
of a heterogeneous organism as a genetic marker of the target organism. Further, when
the genetic test service providing server 300 requests a response to the existence
of the genetic marker or whether it is important or well known, the at least one database
server 400 transmits the response data to the genetic test service providing server
300. In this case, the at least one database server 400 may be a server that collects,
maps, and stores information on at least one genetic marker, a reference standard
genome map, importance, and whether or not it is well known.
[0028] When there is no importance, knowledge, or a reference standard genome map, the genetic
test service providing server 300 builds the re-stored information for each genetic
marker. Further, when the presence or absence of a genetic marker is received as a
response (Ack) in the at least one database server 400, it may be implemented to integrate
and use two pieces of information based on a genetic marker.
[0029] Here, the at least one database server 400 may be implemented as a computer that
may connect to a remote server or terminal through a network. Here, the computer may
include, for example, navigation, a laptop equipped with a web browser, a desktop,
and a laptop. In this case, the at least one database server 400 may be implemented
as a terminal capable of accessing a remote server or terminal through a network.
The at least one database server 400 is, for example, a wireless communication device
with guaranteed portability and mobility and may include all kinds of handheld-based
wireless communication devices such as navigation, personal communication system (PCS),
global system for mobile communications (GSM), personal digital cellular (PDC), personal
handy-phone system (PHS), personal digital assistant (PDA), international mobile telecommunication
(IMT)-2000, code division multiple access (CDMA)-2000, W-code division multiple access
(W-CDMA), Wireless broadband internet (Wibro) terminal, a smartphone, a smart pad,
a tablet PC, etc.
[0030] Fig. 2 is a block diagram illustrating a genetic test service providing server included
in the system of FIG. 1, Fig. 3 is a flowchart illustrating an example in which a
genetic testing service using a genetic marker of a model organism based on genetic
marker matching of a heterogeneous organism as a genetic marker of a target organism
is performed, according to an embodiment of the present invention. Fig. 4 is an operation
flowchart for explaining the process of comparing genome information between heterogeneous
organisms of Fig. 3.
[0031] Referring to Fig. 2, the genetic test service providing server 300 may include a
selection unit 310, a comparison unit 320, and a providing unit 330.
[0032] When the gene test service providing server 300 according to an embodiment of the
present invention, or another server (not shown) operating in conjunction with the
same transmits an application, program, app page, web page of a genetic test service,
and the like that uses the genetic marker of a model organism based on genetic marker
matching of a heterogeneous organism as a genetic marker of a target organism to the
at least one user terminal 100 and the at least one database server 400, the at least
one user terminal 100 and the at least one database server 400 may install or open
the application, program, app page, web page of a genetic test service and the like
that uses the genetic marker of a model organism based on genetic marker matching
of a heterogeneous organism as a genetic marker of a target organism. Further, the
service program may be driven in the at least one user terminal 100 and the at least
one database server 400 using a script executed in a web browser. Here, the web browser
is a program that enables the use of a web (world wide web) service and refers to
a program that receives and displays hypertext written in a hypertext markup language
(HTML). Examples include Netscape, Explorer, and Chrome. Further, the application
means an application on the terminal, for example, includes an app (app) executed
in a mobile terminal (smartphone).
[0033] Referring to FIG. 2, the selection unit 310 may select at least one genetic marker
from a pre-stored model organism. In this case, the model organism means an organism
in which a genetic marker corresponding to a phenotypic gene indicating a disease
or physical characteristic has been previously identified through many studies and
experiments, such as humans or mice.
[0034] When the genetic marker A of the human species has been identified for disease B
or physical characteristics C through research and experimentation, the significance
and association between the genetic marker A and disease B or between the genetic
marker A and physical characteristics C have already been revealed. Thus, correspondence
between genetic markers-diseases such as A-B and genetic markers-physical features
such as A-C may be known. When it is identified that the genetic marker of A is present
in any patient Z, it can be predicted that the disease B and the physical characteristics
C have appeared, are about to appear, or have the potential to appear. Based on this,
one embodiment of the present invention reveals the matching rate of genetic markers
of not only homogeneous organisms but also heterogeneous organisms. For example, humans
and mice, humans and cats, humans and horses, and humans and dogs take advantage of
the fact that when the gene marker A that appears in humans is also present in dogs,
it can be predicted that disease B and physical characteristics C will appear. Of
course, the above description is a simplified process, and a detailed description
is given later. However, when the gene marker A is the same in humans and dogs, and
it is predicted that a functional change corresponding to the genetic mutation of
the gene marker A will occur, even in dogs, it can be predicted that a dog will also
develop disease B or physical characteristics C.
[0035] To this end, when the selection unit 310 selects at least one genetic marker from
the pre-stored model organism, the at least one genetic marker may be a genetic marker
selected from a preset functional region of the pre-stored model organism. In this
case, the preset functional region may be a region including any one or a combination
of at least one of a protein-coding region, a 5', 3' region, a promoter region, and
a splice region, but is not limited to the described above. It may also be a genomic
region having a lot of functional information, such as an intergenetic region, an
intron, or a combination thereof. Further, the preset functional region may be a region
with a lot of functional significance among disease, physical characteristics, and
phenotypic, genetic markers pre-studied for a model organism, such as an exogenously
important region. Genetic markers may be selected from these preset functional regions.
However, the preset functional region is not limited to a specific genomic region.
[0036] Further, when the selection unit 310 selects at least one genetic marker from the
pre-stored model organism, the at least one genetic marker may include a gene mutation
type corresponding to any one or a combination of at least one single nucleotide variant,
copy number variation, indels, structural variation, epigenomic markers and protein
expression among RNA expression. In this case, the at least one genetic marker may
be any type of genetic mutation. The reason is that if the gene is mutated in the
model organism, the gene can also be mutated in the target organism. Of course, it
is not immediately applied because it is used after a pre-stored functional change
prediction program, which will be described later, identifies functional changes due
to genetic mutations. Further, at least one genetic marker type is not limited to
a specific mutation type, is not limited to those listed, and is not excluded for
reasons not listed.
[0037] The comparison unit 320 may compare the genome information of the target organism
for the genetic testing service and the genome information of the model organism when
the selected at least one genetic marker is a pre-published genetic marker based on
pre-analyzed information. At this time, when the at least one selected genetic marker
is not a pre-published genetic marker based on pre-analyzed information, the comparison
unit 320 predicts a functional change due to genetic mutation through a pre-stored
function change prediction program. If so, at least one genetic marker whose score
corresponding to the predicted functional change exceeds a preset score may be selected.
In this case, the pre-stored functional change prediction program may be a program
for predicting the importance of a function, such as Sift or Polyphen-2, but the type
of the program is not limited to those described above. This is because the functional
change prediction program may be easily implemented in various ways, even if it is
not the aforementioned program.
[0038] The comparison unit 320 may compare the reference standard genome map corresponding
to the genome information of the model organism and the reference standard genome
map corresponding to the genome information of the target organism by whole genome
alignment. For example, when comparing the reference standard genome map of humans,
which is a model organism, with the reference standard genome map of dog, which is
the target organism, major genetic markers present on the genome map are matched (liftover)
and the matching rate exceeds the preset value, it can be considered that the two
genetic markers perform the same function. The reason is that the genome means all
deoxyribonucleic acid (DNA), including genes in living things, and contains all the
biological information necessary to make living things and sustain life.
[0039] Understanding the genome information of an organism plays an important role in understanding
the organism's life phenomenon, the relationship between the genotype and phenotype
genes, and the traits of the organism formed by the influence of the environment.
For example, if a gene directs hepatocytes to remove excess cholesterol from the bloodstream,
this gene instructs hepatocytes to make a specific protein, and the protein produced
is responsible for removing excess cholesterol. However, if this gene is mutated or
changed, the produced protein may not work properly or may not be made at all, making
it impossible to remove excess cholesterol. It is important to find out the nucleotide
sequence of the genome in order to find the location of the gene associated with such
familial hypercholesterolemia and to detect the modification. As such, an embodiment
of the present invention performs whole genome alignment on a reference standard genome
map to match a model organism, a genetic marker and a set of markers. Particularly,
a genetic marker preset to be important on the genome of a target organism similar
or identical to the model organism, and when the matching result exceeds the preset
value or aligned, it can be predicted that a phenotype such as a disease or physical
characteristic of the model organism will be exhibited in the target organism in the
order of the genetic marker with the highest matching rate.
[0040] Meanwhile, when the selected at least one genetic marker is a pre-published genetic
marker based on pre-analyzed information, the comparison unit 320 compares the genome
information of the target organism for genetic test service to the genome information
of the model organism. Further, when the reference standard genome map corresponding
to the genome information of the target organism does not exist, after aligning the
gene sequence of the target organism to the reference standard genome map of the model
organism (sequence alignments), at least selected After sequence-aligning the gene
sequence of the target organism to the reference standard genome map of the model
organism. Further, after matching (Liftover) with selected at least one genetic marker
present on the genomic information of the model organism, The genome information of
the target organism can be mapped to the genome. Assuming that a reference standard
genome map of a target organism of, for example, a cat, does not exist, the cat's
gene sequence is aligned to the human reference standard genome map. Further, when
matching with the selected at least one genetic marker, and the matching rate exceeds
a preset value or satisfies a preset rank when sorted in ascending order, it can be
seen that a genetic marker in a region with a high matching rate is also present in
cats, and it is possible to generate a genome map through this.
[0041] The providing unit 330 may provide a gene report based on a gene mutation for the
target organism based on the comparison result of the genomic information of the target
organism and the model organism. At this time, when as a result of the comparison,
the matching rate of pre-selected at least one genetic marker on the genomic information
of the model organism to the target organism exceeds a preset value, the providing
unit 330 predicts functional change due to genetic mutation of at least one of the
target organism exceeding the preset value through pre-stored function change prediction
program. Further, the providing unit 330 sets at least one genetic marker for which
the score corresponding to the predicted functional change exceeds a preset score
as a genetic marker that is reliable in the functional association of the genetic
mutation of the target organism and the model organism and the functional change of
the genetic mutation, thereby creating a genetic report.
[0042] In this case, the level, i.e., the degree at which it is considered that the functional
relevance and the reliability of the functional change of the gene mutation exist
in both the target organism and the model organism, may be classified differently,
according to the following four examples. That is, each reliability score may be given
differently, which is described below.
[First embodiment]
[0043] The comparison unit 330 provides the gene mutation-based gene report for the target
organism based on the comparison result of the genomic information of the target organism
and the model organism. When, as a comparison result, the matching rate of the pre-selected
at least one genetic marker on the genomic information of the model organism to the
target organism exceeds a preset value, and the at least one genetic marker of the
target organism exceeding the preset value is a functionally well-known genetic mutation
marker in the model organism, the genetic mutation of the model organism is applied
to the target organism. The reliability of the functional change of the genetic mutation
may be set at a lower level. Reliability may be classified into a low level, a median
level, and a high level. However, in addition to the above-mentioned level, it may
be given in points or percentages. The first embodiment may be given the lowest score,
the second and third embodiments may be given a higher score than the first embodiment,
and the fourth embodiment may be given the highest score. In the first embodiment,
for example, a genetic mutation marker that is well known functionally in a human
model organism is applied to the target organism as it is. In this case, it is assumed
that the existing scientific research results have the same or similar effect on other
species. In this case, it is assumed that the mutation information of a model organism
in a disease-related database such as ClinVar or Omim, for example, a human genome
genetic mutation is a meaningful mutation having the same function in the target species.
Since all data is based on assumptions, the reliability score can give the low level
the lowest.
[Second embodiment]
[0044] The comparison unit 330 provides the gene mutation-based gene report for the target
organism based on the comparison result of the genomic information of the target organism
and the model organism. When, as a comparison result, i) the matching rate of the
pre-selected at least one genetic marker on the genomic information of the model organism
to the target organism exceeds a preset value, ii) at least one genetic marker of
the model organism corresponding to the at least one genetic marker of the target
organism exceeding a preset value is not a genetic mutation marker functionally well
known in the model organism, and iii) the function change score of the pre-stored
functional change prediction program of at least one genetic marker of the target
organism exceeding a preset value exceeds the preset score, iv) the genetic mutation
of the model organism may be applied to the target organism, and the reliability may
be set at a median level. There is no information about the functional change in the
second embodiment because there is no significant study on the model organism. However,
when the genetic mutation on the genome map of the matched (liftover) target organism
has a large functional change in the result of driving it with a function change prediction
program such as Sift or Polyphen-2, it may be used as a mutation that predicts the
genetic mutation and functional change of another target species, that is, the target
organism. This may have a slightly higher score than the first embodiment described
above. For example, the reliability may be given a median level. Further, the reliability
may be calculated by a scoring method that gives more points than in the first embodiment,
as described above.
[Third embodiment]
[0045] The providing unit 330 provides the gene mutation-based gene report for the target
organism based on the comparison result of the genomic information of the target organism
and the model organism. When, as a comparison result, i) the matching rate of the
pre-selected at least one genetic marker on the genomic information of the model organism
to the target organism exceeds a preset value, ii) at least one genetic marker of
the model organism corresponding to the at least one genetic marker of the target
organism exceeding a preset value is a genetic mutation marker that is not included
in a database pre-established in the model organism, and iii) the functional change
score of the pre-stored functional change prediction program exceeds the preset score,
iv) the genetic mutation of the model organism may be applied to the target organism,
and the reliability may be set at a median level. In this case, although genetic mutations
are not known in the mutation information database already known in the model organism,
that is, Clinvar, which is a pre-established database, i) if a prediction is made
by a functional change prediction program such as Sift or Polyphen-2, it means that
the functional change is expected to appear. In this case, as described above, the
score may be slightly higher than in the first embodiment, and for example, the reliability
may be given a median level. Further, the reliability may be calculated by a scoring
method that gives more points than in the first embodiment, as described above. Here,
the scores of the second and third embodiment may be the same, but different settings
may be made. Further, it ispossible to set the level differently by subdividing the
lower level among the median level.
[0046] Further, there is one more case in the third embodiment. The providing unit 330 provides
a gene mutation-based gene report for the target organism based on the comparison
result of the genome information of the target organism and the model organism. When,
as a result of the comparison, i) the matching rate of the pre-selected at least one
genetic marker on the genomic information of the model organism to the target organism
exceeds a preset value, ii) at least one genetic marker of the model organism corresponding
to the at least one genetic marker of the target organism exceeding a preset value
is a genetic mutation marker that is not included in a database pre-established in
the model organism, and iii) the functional change score of the pre-stored functional
change prediction program of at least one genetic marker of the target organism exceeding
a preset value exceeds the preset score, iv) the genetic mutation of the model organism
may be applied to the target organism, and the reliability may be set at a median
level. In this case, although genetic mutations are not known in the mutation information
database already known in the model organism, that is, Clinvar, which is a pre-established
database, if a prediction is made by a functional change prediction program such as
Sift or Polyphen-2, this refers to a case in which a high score is obtained from a
functional change prediction program such as Sift or Polyphen-2 even in the gene sequence
on the genome map of the target organism that matches this.
[Fourth embodiment]
[0047] The comparison unit 330 provides the gene mutation-based gene report for the target
organism based on the comparison result of the genomic information of the target organism
and the model organism. When, as a comparison result, i) the matching rate of the
pre-selected at least one genetic marker on the genomic information of the model organism
to the target organism exceeds a preset value, ii) the at least one genetic marker
of the target organism exceeding the preset value is a functionally well-known genetic
mutation marker in the model organism, and iii) the functional change score of the
pre-stored functional change prediction program exceeds the preset score, iv) the
genetic mutation of the model organism may be applied to the target organism, and
the reliability may be set at a higher level. In this case, it is already known in
the model organism that an important functional change occurs when a genetic mutation
occurs. Further, when a functional change prediction program such as Sift and Polyphen-2
is run on the genetic mutation on the genome map of matched (liftover) different species,
that is, the target organism, if the functional change continues to be large, it is
to be used as a genetic mutation to predict the genetic mutation and functional change
of the target organism, and it is to set the reliability as high as the intensity
of the functional change is large. In this case, as described above, the score may
be higher than that of the second or third embodiment; for example, the reliability
may be given a higher level.
[0048] Further, the reliability may be calculated by a scoring method in which more points
are given than in the second or third embodiment as described above. Overall, the
first embodiment has the lowest score, the second embodiment and the third embodiment
are higher than the first embodiment, the second embodiment and the third embodiment
have the same score or are within the error range, and the fourth embodiment may be
given a higher score than the second embodiment or third embodiment. Reliability can
be summarized as follows: Reliability of embodiment 1 < Reliability of embodiment
2 ≒ Reliability of embodiment 3 < Reliability of embodiment 4.
[0049] Hereinafter, an operation process, according to the configuration of the genetic
test service providing server of Fig. 2, is described in detail with reference to
Figs. 3 and 4 as an example. However, it is apparent that the embodiment is only one
of various embodiments of the present invention, and it is not limited thereto.
[0050] Referring to Fig. 3, the genetic test service providing server 300 selects a genetic
marker from the model organism (S3100) and confirms that the selected genetic marker
is classified as important based on pre-analyzed information and is a known genetic
marker (S3200) as a result of confirmation if the information is i) pre-analyzed,
ii) classified as important, and iii) is a known genetic marker, the genome information
of the model organism and the genome information of the target organism are compared.
If any one of i) to iii) or at least one combination thereof is not satisfied, the
genetic test service providing server 300 predicts functional change due to genetic
mutation in the model organism and performs scoring. Those with a high score may be
utilized by making assumptions and predictions that there will be important functional
changes even in the target organism, which is the target species.The score is not
limited to any numerical value because the set value may differ for each genetic marker
or mutation.
[0051] Next, the genetic test service providing server 300 compares the model organism's
genome information with the target organism's genome information. At this time, referring
to Fig. 4, scoring is performed by predicting due to genetic mutation in the target
organism (S3410), and the genetic mutation result of the target organism is predicted
based on the analyzed information of the model organism and the target organism, and
reliability may be given as described above. The analyzed information may be research
result information but is not limited thereto. Different scores may be given to reliability,
as described above. Then, finally, the genetic test service providing server 300 may
provide a gene mutation-based gene report for the target organism.
[0052] As described above, matters not described for the method of providing a genetic test
service using the genetic marker of a model organism based on genetic marker matching
of a heterogeneous organism as a genetic marker of a target organism of Figs. 2, 3,
and 4 are the same or may be easily inferred from the description of the method of
providing a genetic test service using the genetic marker of a model organism based
on genetic marker matching of a heterogeneous organism as a genetic marker of a target
organism of Fig 1. Thus, the description below is excluded.
[0053] Fig. 5 is a view showing a process of transmitting and receiving data between respective
components included in a system for providing genetic test service using a genetic
marker of a model organism based on genetic marker matching of a heterogeneous organism
of Fig. 1,according to an embodiment of the present invention. Hereinafter, an example
of a process in which data is transmitted and received between the respective components
is described with reference to Fig. 5. However, it is apparent to those skilled in
the art that the present application is not limited to such an embodiment. According
to the various embodiments described above, the data transmission/reception process
shown in Fig. 5 may be changed.
[0054] Referring to Fig. 5, the genetic test service providing server selects at least one
genetic marker from a pre-stored model organism (S5100). It compares when the selected
at least one genetic marker is a pre-published genetic marker as pre-analyzed information,
the genome information of the target organism, and the genome information of the model
organism to be used for the genetic testing service (S5200), and provides a gene mutation-based
gene report for the target organism based on the comparison result of the genome information
of the target organism and the model organism (S5300).
[0055] The order between the above-described steps S5100 to S5300 is merely an example,
and the present invention is not limited thereto. That is, the order between the above-described
steps S5100 to S5300 may be mutually changed, and some of these steps may be simultaneously
executed or deleted.
[0056] As described above, matters not described for the method of providing a genetic test
service using the genetic marker of a model organism based on genetic marker matching
of a heterogeneous organism as a genetic marker of a target organism of Fig. 5 are
the same or may be easily inferred from the description of the method of providing
a genetic test service using the genetic marker of a model organism based on genetic
marker matching of a heterogeneous organism as a genetic marker of a target organism
of Figs 1, 2, 3, and 4. Thus, the description below is excluded.
[0057] A method for providing a genetic test service using a genetic marker of a model organism
based on genetic marker matching of a heterogeneous organism as a genetic marker of
a target organism, according to an embodiment described with reference to Fig. 5,
may also be implemented in the form of a recording medium containing instructions
executable by a computer, such as an application or program module executed by a computer.
Computer-readable media may be any available media accessed by a computer and includes
volatile and nonvolatile media, removable and non-removable media. Further, computer-readable
media may include all computer storage media. Computer storage media includes both
volatile and nonvolatile, removable, and non-removable media implemented in any method
or technology for storing information, such as computer-readable instructions, data
structures, program modules, or other data.
[0058] The method of providing a genetic test service using a genetic marker of a model
organism based on genetic marker matching of a heterogeneous organism as a genetic
marker of a target organism, according to an embodiment of the present invention as
described above may be executed by an application basically installed in a terminal
(This may include programs included in the platform or operating system installed
by default in the terminal). It may be executed by an application (i.e., a program)
directly installed in the master terminal by a user through an application-providing
server such as an application store server, an application, or a web server related
to the corresponding service. In this sense, the method for providing a genetic test
service using a genetic marker of a model organism based on genetic marker matching
of a heterogeneous organism as a genetic marker of a target organism, according to
an embodiment of the present invention, as described above may be implemented by an
application (i.e., a program) basically installed in a terminal or directly installed
by a user and may be recorded in a computer-readable recording medium such as a terminal.
[0059] The above description of the present invention is for illustration, and those of
ordinary skill in the art to which the present invention pertains can understand that
it can be easily modified into other specific forms without changing the technical
spirit or essential features of the present invention. Therefore, it should be understood
that the embodiments described above are illustrative in all respects and not restrictive.
For example, each component described as a single type may be implemented in a distributed
manner, and likewise, components described as distributed may also be implemented
in a combined form.
[0060] The scope of the present invention is indicated by the following claims rather than
the above-detailed description, and all changes or modifications derived from the
meaning and scope of the claims and their equivalent concepts should be interpreted
as being included in the scope of the present invention.
1. A method of providing a genetic test service using a genetic marker of a model organism
based on a genetic marker matching of a heterogeneous organism as a genetic marker
of a target organism, the method comprising steps of:
selecting at least one genetic marker from a pre-stored model organism;
comparing, when the selected at least one genetic marker is a pre-published genetic
marker as pre-analyzed information, the genome information of the target organism
of the genetic testing service with the genome information of the model organism;
and
generating and providing a gene mutation-based gene report for the target organism
based on a comparison result of genomic information between the target organism and
the model organism.
2. The method of claim 1, wherein in step of selecting at least one genetic marker from
the pre-stored model organism, the at least one genetic marker is a genetic marker
selected from a predetermined functional region of the pre-stored model organism,
and
wherein the predetermined functional region is a region comprising at least one of
a protein coding region, a 5' and 3' region, a promoter region, and a splice region
or any one combination thereof.
3. The method of claim 1, wherein in step of selecting at least one genetic marker from
the pre-stored model organism, the at least one genetic marker comprises a gene mutation
type corresponding to any one of single nucleotide variants, copy number variations,
indels, structural variations, epigenomic markers, protein gene expression among RNA
gene expression or at least one combination thereof.
4. The method of claim 1, wherein step of comparing the genome information of the target
organism of the genetic testing service with the genome information of the model organism
comprises step of:
comparing, when the selected at least one genetic marker is a pre-published genetic
marker as pre-analyzed information, the genome information of the target organism
of the genetic testing service with the genome information of the model organism;
or
predicting, when the selected at least one genetic marker is not a pre-published genetic
marker as pre-analyzed information, functional change due to genetic mutation through
a pre-stored function change prediction program and selecting at least one genetic
marker whose score corresponding to the predicted functional change exceeds a preset
score.
5. The method of claim 1, wherein step of comparing, when the selected at least one genetic
marker is a pre-published genetic marker as pre-analyzed information, the genome information
of the target organism of the genetic testing service with the genome information
of the model organism comprises step of:
performing comparison by performing whole genome alignment between the reference standard
genome map corresponding to the genome information of the model organism and the reference
standard genome map corresponding to the genome information of the target organism.
6. The method of claim 1, wherein step of comparing, when the selected at least one genetic
marker is a pre-published genetic marker as pre-analyzed information, the genome information
of the target organism of the genetic testing service with the genome information
of the model organism comprises step of:
sequence-aligning, when the reference standard genome map corresponding to the genome
information of the target organism does not exist, the gene sequence of the target
organism to the reference standard genome map of the model organism, then performing
liftover by genome-wide matching with the selected at least one genetic marker present
on the genomic information of the model organism, and then genomically mapping the
genome information of the target organism.
7. The method of claim 1, wherein step of generating and providing a gene mutation-based
gene report for the target organism based on a comparison result of genomic information
between the target organism and the model organism comprises step of:
predicting, when as a result of the comparison, the matching rate of the selected
at least one genetic marker on the genomic information of the model organism to the
target organism exceeds a preset value, functional change due to genetic mutation
through a pre-stored function change prediction program on the at least one genetic
marker of the target organism that exceeds the preset value;
setting at least one genetic marker whose score corresponding to the predicted functional
change exceeds the preset score as a genetic marker that is reliable in the functional
association of the genetic mutation between the target organism and the model organism
and the functional change of the genetic mutation to generate the gene report.
8. The method of claim 1, wherein step of generating and providing a gene mutation-based
gene report for the target organism based on a comparison result of genomic information
between the target organism and the model organism comprises step of:
applying, when as a result of the comparison, the matching rate of the selected at
least one genetic marker on the genomic information of the model organism to the target
organism exceeds a preset value, and when the at least one genetic marker of the target
organism that exceeds the preset value is a genetic mutation marker that is functionally
well known in the model organism, the genetic mutation of the model organism to the
target organism and setting the functional change reliability of the genetic mutation
to a lower level, and
wherein the reliability is classified into a low level, a median level, and a high
level.
9. The method of claim 1, wherein step of generating and providing a gene mutation-based
gene report for the target organism based on a comparison result of genomic information
between the target organism and the model organism comprises step of:
applying, when as a result of the comparison, the matching rate of the selected at
least one genetic marker on the genomic information of the model organism to the target
organism exceeds a preset value, and when at least one genetic marker of the model
organism corresponding to the at least one genetic marker of the target organism that
exceeds the preset value is not a genetic mutation marker that is functionally well
known in the model organism, and the functional change score of the pre-stored functional
change prediction program on the at least one genetic marker of the target organism
that exceeds the preset value, exceeds the preset score, the genetic mutation of the
model organism to the target organism and setting the reliability to a median level,
and
wherein the reliability is classified into a low level, a median level, and a high
level.
10. The method of claim 1, wherein step of generating and providing a gene mutation-based
gene report for the target organism based on a comparison result of genomic information
between the target organism and the model organism comprises step of:
applying, when as a result of the comparison, the matching rate of the selected at
least one genetic marker on the genomic information of the model organism to the target
organism exceeds a preset value, and when at least one genetic marker of the model
organism corresponding to the at least one genetic marker of the target organism that
exceeds the preset value is a genetic mutation marker not included in the database
pre-built in the model organism, and the functional change score of the functional
change prediction program pre-stored exceeds the preset score, the genetic mutation
of the model organism to the target organism and setting the reliability to a median
level, and
wherein the reliability is classified into a low level, a median level, and a high
level.
11. The method of claim 1, wherein step of generating and providing a gene mutation-based
gene report for the target organism based on a comparison result of genomic information
between the target organism and the model organism comprises step of:
applying, when as a result of the comparison, the matching rate of the selected at
least one genetic marker on the genomic information of the model organism to the target
organism exceeds a preset value, and when at least one genetic marker of the model
organism corresponding to the at least one genetic marker of the target organism that
exceeds the preset value is a genetic mutation marker not included in the database
pre-built in the model organism, and the functional change score of the pre-stored
function change prediction program on the at least one genetic marker of the target
organism that exceeds the preset value, exceeds the preset score, the genetic mutation
of the model organism to the target organism and setting the reliability to a median
level, and
wherein the reliability is classified into a low level, a median level, and a high
level.
12. The method of claim 1, wherein step of generating and providing a gene mutation-based
gene report for the target organism based on a comparison result of genomic information
between the target organism and the model organism comprises step of:
applying, when as a result of the comparison, the matching rate of the selected at
least one genetic marker on the genomic information of the model organism to the target
organism exceeds a preset value, and when the at least one genetic marker of the target
organism that exceeds the preset value is a genetic mutation marker functionally well
known in the model organism, and the function change score of the pre-stored function
change prediction program thereof exceeds the preset score, the genetic mutation of
the model organism to the target organism and setting the reliability to a high level,
and
wherein the reliability is classified into a low level, a median level, and a high
level.
13. A computer-readable recording medium recording a program for executing the method
of any one of claims 1 to 12.